Useful Statistical Methods for Defining Product and Process Specifications

February 11, 2022
90 Mins
Steven Wachs
$199.00
$299.00
$299.00
$349.00
$299.00
$199.00
$299.00
$199.00
$199.00
$299.00
$299.00
$199.00


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Useful Statistical Methods for Defining Product and Process

Scientists, Design Engineers, and Manufacturing/Process Engineers must develop product and process specifications that ensure that products delivered to customers perform their intended functions over time. If specifications are too wide, the risks of inadequate product performance and product failures increase. If specifications are too tight, the costs to ensure conformance increase. Scientific and engineering theory, knowledge, and principles play an important role in developing specifications, but usually this must be combined with testing and data analysis to verify appropriate specifications.    

This webinar by industry expert Steven Wachs, covers useful and important statistical methods that assist scientists and engineers in the development of appropriate product and process specifications.   

Steven will start the webinar with a basic review of what specifications are and why they are important along with the risks of inappropriate specifications. He will discuss several methods to characterize existing product or process data that help determine whether proposed specifications are feasible or perhaps unnecessarily liberal. The typically confusing terms of coverage probability and confidence levels will also be reviewed in some detail.  Steven will also discuss, the use of predictive models in developing specifications of inputs to ensure adequate responses.  

Finally, the use of Monte Carlo Simulation will be briefly discussed as a way to further optimize specifications to achieve optimal outcomes.  

 

Webinar Objectives

Often, product specifications are established based on historical precedent or are changed in response to a problem that arises.  However, methods exist to ensure that product specifications are appropriate to ensure products perform their intended function over time.  This webinar delves into various statistical methods that are useful for defining or confirming that product and/or process specifications are appropriate  

The information gained in the webinar will allow you improve your ability to develop appropriate and defensible specifications.  This manages the risks of overly liberal specifications and the costs associated with overly conservative specifications.  

Webinar Agenda

  • Review Product/Process Specifications and why they are important
  • Learn methods for characterizing existing process data to describe expected variation in the population (Reference Intervals, Tolerance Intervals)
  • Using predictive models, identify input parameter specifications that ensure key outcomes will be met with high confidence
  • Use Monte Carlo simulation with predictive models to optimize specifications

Webinar Highlights

  • How to use existing data to characterize the expected distribution of the population and using defined cut-offs, help to establish product specifications (or determine if the specifications are realistic)
  • How to use predictive models developed using regression or Design of Experiments to set key process or product input specifications that will ensure the desired outcomes are achieved
  • How to use Monte Carlo Simulation to further optimize parameter target values and specifications
  • How to supplement engineering and scientific knowledge with statistical methods to develop the best possible specifications

Who Should Attend

  • Design Engineer
  • Engineering Manager
  • Quality Engineer
  • Quality Manager
  • Product Engineer
  • Program / Product Manager
  • Product Design Engineer
  • Scientists
  • Process Engineer
  • Manufacturing Engineer

Steven Wachs

Steven Wachs has 25 years of wide-ranging industry experience in both technical and management positions. Steve has worked as a statistician at Ford Motor Company where he has extensive experience in the development of statistical models, reliability analysis, designed experimentation, and statistical process control.   Steve is currently a Principal Statistician at Integral Concepts, Inc. where he assists manufacturers in the application of statistical methods to reduce variation and improve quality and productivity.  He also possesses expertise in the application of reliability methods to achieve robust and reliable products as well as to estimate and reduce warranty. ...

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